2:51 AM
The approach I would take is:
Two separate programs for videos and non-videos
Each program, when it starts, acquires a lock on the to-convert dir
If the next batch starts before the previous one is finished, the lock will prevent it from overlapping/interfering
Each program simply does the task it needs to, and outputs into a new directory
Another program handles uploads to s3, but doesn't batch them. Instead, it's always uploading 4 files (you may be able to increase that number), so that files are instantly uploaded as they're processed
As for the actual conversion programs, I would do ffmpeg + bash for videos
For PDFs, I might move to python since they're hard to deal with in bash
I would avoid VM based languages like Java unless I need to, since they will take up a bunch of memory on a potentially limited machine
If you frequently find locks being hit, you need a bigger machine
Another option would be to upload directly to S3, and trigger lambda jobs to do the conversions
Lambda is quite cheap, integrates directly with s3, and is far more parallel than your machine
Especially since your conversion tasks are all independent and don't depend on each other
Additionally, if the video files aren't in the GB range, you could even get away with lazy converting them when someone tries to stream
Transcoding/compression is faster than the stream in most cases, so the users won't notice much
And once the first user triggers the lazy convert, you can save the result and serve that directly next time
This is helpful if a large portion of your content is unlikely to be access immediately after upload